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首页> 外文期刊>Journal of Intelligent Manufacturing >A new bottleneck detecting approach to productivity improvement of knowledgeable manufacturing system
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A new bottleneck detecting approach to productivity improvement of knowledgeable manufacturing system

机译:一种新的瓶颈检测方法,可提高知识丰富的制造系统的生产率

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摘要

Manufacturing systems are usually restricted by one or more bottlenecks. Identification of bottleneck is a key factor to improving the throughput of a production system. However, locating the bottleneck is no easy task. This paper proposes a novel method of bottleneck detecting for knowledgeable manufacturing system (KMS). Presented a net-like model of the knowledgeable manufacturing system for bottleneck detection, which adapts well to the bottleneck analysis in flexible product lines. Based on the model, the concept of entire production net is defined and an approach to identifying bottlenecks in entire production nets is developed and proven effective theoretically. A self-learning method is introduced for storing the knowledge of bottlenecks and their conditions in the knowledge base to detect which cells are required to upgrade their capacity. Validity of the approach is verified by the numerical experiment.
机译:制造系统通常受到一个或多个瓶颈的限制。识别瓶颈是提高生产系统吞吐量的关键因素。但是,找到瓶颈并非易事。本文提出了一种用于知识制造系统(KMS)的瓶颈检测新方法。提出了知识丰富的制造系统的网状模型,用于瓶颈检测,该模型很好地适应了灵活产品线中的瓶颈分析。基于该模型,定义了整个生产网的概念,并开发了一种识别整个生产网中瓶颈的方法,并在理论上证明了其有效性。引入了一种自学习方法,用于将瓶颈知识及其条件存储在知识库中,以检测需要哪些单元来升级其容量。通过数值实验验证了该方法的有效性。

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